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隧道建设(中英文) ›› 2022, Vol. 42 ›› Issue (S2): 181-188.DOI: 10.3973/j.issn.2096-4498.2022.S2.022

• 研究与探索 • 上一篇    下一篇

一种基于改进型凹点匹配的岩碴图像分割算法

郑永光, 陈敬举, 范亚磊, 王珩, 孙颜明   

  1. (中铁工程装备集团有限公司, 河南 郑州〓450016
  • 出版日期:2022-12-30 发布日期:2023-03-24
  • 作者简介:郑永光(1985—),河南商丘人,2011年毕业于河南科技大学,机械电子工程专业, 硕士,高级工程师,现从事隧道掘进装备设计研发及施工方面的工作。 E-mail: zhengyongguang@crectbm.com。

A Segmentation Algorithm of Rock Ballast Image Based on Improved Concave Point Matching

ZHENG Yongguang, CHEN Jingju, FAN Yalei, WANG Heng, SUN Yanming   

  1. (China Railway Engineering Equipment Group Co., Ltd., Zhengzhou 450016, Henan, China)
  • Online:2022-12-30 Published:2023-03-24

摘要: 为解决岩碴和背景颜色相近、边缘不规则、堆积重叠、单个岩石像素不一致等导致的图像分割识别困难问题,提出一种基于距离及边界长度的凹点匹配算法。首先,对图像进行直方图均衡化、高斯降噪等处理,增强图像对比度并抑制部分噪声; 其次,利用像素阈值分割法对图像进行二值化处理并提取图像轮廓; 再次,利用矢量夹角法对提取的岩碴轮廓进行凹点检测,并基于岩碴图像特征,设计了一种新的凹点匹配准则; 最后,选取实际工程中的岩碴图片对所提方法进行验证,结果表明,该方法能够较准确地获取凹点对,对于碴片图像轮廓分割的效果,像素准确率达到88.9%IoU达到82.7%

关键词: 图像分割, 凹点检测, 凹点匹配, 岩碴, 隧道掘进机

Abstract: A concave point matching algorithm based on distance and boundary length is proposed to address the difficulty in image segmentation and recognition caused by similar color of rock ballast and background, irregular edge, stacking and overlapping, and inconsistency of single rock pixel. First, the image is processed by histogram equalization and Gaussian noise reduction to enhance the image contrast and suppress part of the noise. Second, the pixel threshold segmentation method is employed to binary the image and extract the image outline. Third, the vector angle method is employed to detect the concave points of the extracted rock ballast contour, and a new concave point matching criterion is designed based on the characteristics of rock ballast image. Finally, the proposed method is validated by selecting rock ballast images from actual projects. The results show that the method can obtain the concave point pairs more accurately, the pixel accuracy rate and the IoU in contour segmentation effect of the ballast image reach 88.9% and 82.7%, respectively.

Key words: image segmentation, concave point detection, concave point matching, rock ballast, tunnel boring machine